Forecasting of Self-Rated Health Using Hidden Markov Algorithm

Detta är en Master-uppsats från KTH/Matematisk statistik

Författare: Jesper Loso; [2014]

Nyckelord: ;

Sammanfattning: In this thesis a model for predicting a person’s monthly average of self-rated health the following month was developed. It was based on statistics from a form constructed by HealthWatch. The model used is a Hidden Markov Algorithm based on Hidden Markov Models where the hidden part is the future value of self-rated health. The emissions were based on five of the eleven questions that make the HealthWatch form. The questions are answered on a scale from zero to one hundred. The model predicts in which of three intervals of SRH the responder most likely will answer on average during the following month. The final model has an accuracy of 80 %.

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